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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Robust estimation in linear regression models for longitudinal data with covariate measurement errors and outliers
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Robust estimation in linear regression models for longitudinal data with covariate measurement errors and outliers

机译:具有协变量测量误差和异常值的纵向数据线性回归模型中的鲁棒估计

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摘要

Measurement errors and outliers commonly arise during the process of longitudinal data collection and ignoring them in data analysis can lead to large deviations in estimates. Therefore, it is important to take into account the effect of measurement errors and outliers in longitudinal data analysis. In this paper, a robust estimating equation method for analyzing longitudinal data with covariate measurement errors and outliers is proposed. Specifically, the biases caused by measurement errors are reduced via using the independence between replicate measurements and the biases caused by outliers are corrected via centralizing the observed covariate matrix. The proposed method does not require specifying the distributions of the true covariates, response and measurement errors. In practice, it can be easily implemented via the standard generalized estimating equations algorithms. The asymptotic normality of the proposed estimator is established under regularity conditions. Extensive simulation studies show that the proposed method performs better in handling measurement errors and outliers than several existing methods. For illustration, the proposed method is applied to a data set from the Lifestyle Education for Activity and Nutrition (LEAN) study. (C) 2018 Elsevier Inc. All rights reserved.
机译:在纵向数据收集过程中通常出现的测量误差和异常值在数据分析中忽略它们可能导致估计中的大偏差。因此,重要的是考虑测量误差和异常值在纵向数据分析中的影响。本文提出了一种用于分析具有协变量测量误差和异常值的纵向数据的稳健估计等式方法。具体地,通过使用复制测量之间的独立性和由异常值校正通过集中观察的协变量矩阵来校正由测量误差引起的偏差。所提出的方法不需要指定真正协变量,响应和测量误差的分布。在实践中,可以通过标准的广义估计方程算法容易地实现。建议估计人的渐近常态是在规则条件下建立的。广泛的模拟研究表明,该方法在处理比几种现有方法的测量误差和异常值方面更好地执行。为了说明,所提出的方法应用于来自生活方式教育的数据和营养(精益)研究的数据。 (c)2018年Elsevier Inc.保留所有权利。

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